Accurate prediction of contacts between β-strand residues can significantly contribute towards ab initio prediction of the 3D structure of many proteins. Contacts in the same protein are highly interdependent. Therefore, significant improvements can be expected by applying statistical relational learners that overcome the usual machine learning assumption that examples are independent and identically distributed. Furthermore, the dependencies among β-residue contacts are subject to strong regularities, many of which are known a priori. In this article, we take advantage of Markov logic, a statistical relational learning framework that is able to capture dependencies between contacts, and constrain the solution according to domain knowledge ...
Correlation patterns in multiple sequence alignments of homologous proteins can be exploited to infe...
We describe a method based on neural networks for predicting contact maps of proteins using as input...
This paper compares CN and RE prediction for simplified HP model proteins using machine learning tec...
Accurate prediction of contacts between β-strand residues can significantly contribute towards ab in...
Motivation: Accurate prediction of contacts between β-strand resi-dues can significantly contribute ...
Motivation: Accurate prediction of contacts between β-strand residues can significantly contribute t...
This article presents recent progress in predicting inter-residue contacts of proteins with a neural...
Given sufficient large protein families, and using a global statistical inference approach, it is po...
Predicting protein structure from sequence remains a major open problem in protein biochemistry. One...
ABSTRACT We describe a new method for us-ing neural networks to predict residue contact pairs in a p...
none3siMotivation: Residue–residue contact prediction is important for protein structure prediction ...
Knowing the number of residue contacts in a protein is crucial for deriving constraints useful in mo...
Motivation: Residue-residue contact prediction is important for protein structure prediction and oth...
The functions of proteins are largely determined by their structures. Determination of the protein t...
Motivation: The de novo prediction of 3D protein structure is enjoying a period of dramatic improvem...
Correlation patterns in multiple sequence alignments of homologous proteins can be exploited to infe...
We describe a method based on neural networks for predicting contact maps of proteins using as input...
This paper compares CN and RE prediction for simplified HP model proteins using machine learning tec...
Accurate prediction of contacts between β-strand residues can significantly contribute towards ab in...
Motivation: Accurate prediction of contacts between β-strand resi-dues can significantly contribute ...
Motivation: Accurate prediction of contacts between β-strand residues can significantly contribute t...
This article presents recent progress in predicting inter-residue contacts of proteins with a neural...
Given sufficient large protein families, and using a global statistical inference approach, it is po...
Predicting protein structure from sequence remains a major open problem in protein biochemistry. One...
ABSTRACT We describe a new method for us-ing neural networks to predict residue contact pairs in a p...
none3siMotivation: Residue–residue contact prediction is important for protein structure prediction ...
Knowing the number of residue contacts in a protein is crucial for deriving constraints useful in mo...
Motivation: Residue-residue contact prediction is important for protein structure prediction and oth...
The functions of proteins are largely determined by their structures. Determination of the protein t...
Motivation: The de novo prediction of 3D protein structure is enjoying a period of dramatic improvem...
Correlation patterns in multiple sequence alignments of homologous proteins can be exploited to infe...
We describe a method based on neural networks for predicting contact maps of proteins using as input...
This paper compares CN and RE prediction for simplified HP model proteins using machine learning tec...